five

Instant classification for the spatially-coded BCI

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NIAID Data Ecosystem2026-03-12 收录
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https://zenodo.org/record/5119526
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资源简介:
The archive contains EEG data from a newly developed brain-computer interface paradigm. The method is described in [1], and the dataset has been recorded for the application described in [2]. Each file in the archive contains data from the online session of the respective participant. The Matlab data structure contains the following fields: data. fsample: sampling rate (512 Hz) data.trial:  EEG signals for each trial data.time: sampling time points data.classified: classifier output for each step data.class: true class data.accuracy: classification accuracy data.probability: posterior class probabilities [1] Maye A, Zhang D, Engel AK (2017) "Utilizing Retinotopic Mapping for a Multi-Target SSVEP BCI With a Single Flicker Frequency", IEEE Transactions on Neural Systems and Rehabilitation Engineering, in press. [2] Maÿe A. Rauterberg R, Engel AK (2021) "Instant classification for the spatially-coded BCI", PLoS ONE, iunder review.
创建时间:
2021-07-25
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